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    • 摘要: 基于同步辐射的全场纳米CT (computed tomography)能够以纳米级的空间分辨率对样品内部三维结构进行无损检测,具有较广的应用领域。常规纳米CT需要采集大量的投影图像以确保三维重建的准确性和高分辨率,这不仅耗时且可能对样品造成辐射损伤。针对纳米CT技术面临的挑战,提出一种新型的去噪网络模型——SwinCBD (Swin Transformer-based convolutional blind denoising)。该模型基于Swin Transformer和卷积神经网络,旨在通过深度学习构建噪声图像与干净图像之间的结构关系映射,实现低曝光、少投影的低剂量纳米CT的高质量重构。实验结果表明,基于SwinCBD模型的低剂量纳米CT重建图像去噪,不仅能提高低剂量CT切片图像的信噪比(提高49.26%),还能在保证图像质量的前提下,大幅缩短纳米CT采集时间。该模型对于提高纳米CT时间分辨率和减少样品辐射损伤具有重要意义。

       

      Abstract: Synchrotron radiation-based full-field nano-computed tomography (CT) is capable of non-destructive detection of the internal 3D structure of samples with nanoscale spatial resolution, and has a wide range of applications. Conventional nano-CT requires the acquisition of numerous projection images to ensure the accuracy and high resolution of 3D reconstruction, which is not only time-consuming but also may cause radiation damage to the sample. In this study, a novel denoising network model, SwinCBD (Swin Transformer-based convolutional blind denoising), is proposed to address the challenges of nano-CT technology. The SwinCBD model is based on Swin Transformer and convolutional neural network to establish structural relation mapping between noisy images and clean images through deep learning to achieve high-quality reconstruction of low-dose nano-CT with low exposure and fewer projections. The experimental results show that the low-dose nano-CT image denoising based on the SwinCBD model improves the signal-to-noise ratio of the low-dose CT slice images (by 49.26%), and drastically reduces the nano-CT projections acquisition time under the premise of ensuring the image quality. The model will be important for improving the nano-CT temporal resolution and reducing the radiation damage of samples.